substra
FL framework
Enables the training and validation of machine learning models on distributed datasets in a secure and scalable manner.
Low-level Python library used to interact with a Substra network
271 stars
9 watching
33 forks
Language: Python
last commit: about 1 month ago
Linked from 1 awesome list
federated-learningfederated-learning-framework
Related projects:
Repository | Description | Stars |
---|---|---|
omarfoq/fedem | Develops and evaluates federated learning algorithms for personalizing machine learning models across heterogeneous client data distributions. | 154 |
xtra-computing/fedov | Develops a framework to address label skews in one-shot federated learning by partitioning data and adapting models. | 14 |
mediabrain-sjtu/fedgela | Federated learning algorithm designed to handle partially class-disjoint data by utilizing bilateral curation and Dirichlet partitioning. | 10 |
xtra-computing/fedsim | A framework that enables federated learning across multiple datasets while optimizing model performance with record similarities. | 24 |
codepothunter/fednp | A framework for non-IID federated learning via neural propagation | 6 |
diaoenmao/semifl-semi-supervised-federated-learning-for-unlabeled-clients-with-alternate-training | An implementation of semi-supervised federated learning for improving the performance of a server using distributed clients with unlabeled data | 34 |
aiot-mlsys-lab/fedrolex | An approach to heterogeneous federated learning allowing for model training on diverse devices with varying resources. | 61 |
litian96/ditto | A framework for personalized federated learning to balance fairness and robustness in decentralized machine learning systems. | 137 |
diogenes0319/fedmd_clean | An implementation of a heterogenous federated learning framework using model distillation. | 149 |
ibm/federated-learning-lib | A framework for collaborative distributed machine learning in enterprise environments. | 499 |
git-disl/scale-fl | An adaptive federated learning framework for heterogeneous clients with resource constraints. | 29 |
cuis15/fcfl | An implementation of Fair and Consistent Federated Learning using Python. | 20 |
omarfoq/knn-per | A federated learning framework with personalized memorization using deep neural networks and k-nearest neighbors for collaborative learning of statistical models | 42 |
shenzebang/federated-learning-pytorch | A PyTorch-based framework for Federated Learning experiments | 40 |
scaleoutsystems/fedn | An open source federated learning framework designed to be secure, scalable and easy-to-use for enterprise environments | 143 |